KKL Observer Synthesis for Nonlinear Systems via Physics-Informed Learning
- URL: http://arxiv.org/abs/2501.11655v1
- Date: Mon, 20 Jan 2025 18:38:51 GMT
- Title: KKL Observer Synthesis for Nonlinear Systems via Physics-Informed Learning
- Authors: M. Umar B. Niazi, John Cao, Matthieu Barreau, Karl Henrik Johansson,
- Abstract summary: We propose a novel learning approach for designing Kazantzis-Kravaris/Luenberger (KKL) observers for autonomous nonlinear systems.
The design of a KKL observer involves finding an injective map that transforms the system state into a higher-dimensional observer state.
We generate synthetic data for training by numerically solving the system and observer dynamics.
- Score: 5.888531936968298
- License:
- Abstract: This paper proposes a novel learning approach for designing Kazantzis-Kravaris/Luenberger (KKL) observers for autonomous nonlinear systems. The design of a KKL observer involves finding an injective map that transforms the system state into a higher-dimensional observer state, whose dynamics is linear and stable. The observer's state is then mapped back to the original system coordinates via the inverse map to obtain the state estimate. However, finding this transformation and its inverse is quite challenging. We propose to sequentially approximate these maps by neural networks that are trained using physics-informed learning. We generate synthetic data for training by numerically solving the system and observer dynamics. Theoretical guarantees for the robustness of state estimation against approximation error and system uncertainties are provided. Additionally, a systematic method for optimizing observer performance through parameter selection is presented. The effectiveness of the proposed approach is demonstrated through numerical simulations on benchmark examples and its application to sensor fault detection and isolation in a network of Kuramoto oscillators using learned KKL observers.
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